Litcius/Paper detail

Comparing human and model-based forecasts of COVID-19 in Germany and Poland

Nikos I Bosse, Sam Abbott, Johannes Bracher, Habakuk Hain, Billy J. Quilty, Mark Jit, Edwin van Leeuwen, Anne Cori, Sebastian Funk

2022PLoS Computational Biology31 citationsDOIOpen Access PDF

Abstract

Forecasts based on epidemiological modelling have played an important role in shaping public policy throughout the COVID-19 pandemic. This modelling combines knowledge about infectious disease dynamics with the subjective opinion of the researcher who develops and refines the model and often also adjusts model outputs. Developing a forecast model is difficult, resource- and time-consuming. It is therefore worth asking what modelling is able to add beyond the subjective opinion of the researcher alone. To investigate this, we analysed different real-time forecasts of cases of and deaths from COVID-19 in Germany and Poland over a 1-4 week horizon submitted to the German and Polish Forecast Hub. We compared crowd forecasts elicited from researchers and volunteers, against a) forecasts from two semi-mechanistic models based on common epidemiological assumptions and b) the ensemble of all other models submitted to the Forecast Hub. We found crowd forecasts, despite being overconfident, to outperform all other methods across all forecast horizons when forecasting cases (weighted interval score relative to the Hub ensemble 2 weeks ahead: 0.89). Forecasts based on computational models performed comparably better when predicting deaths (rel. WIS 1.26), suggesting that epidemiological modelling and human judgement can complement each other in important ways.

Topics & Concepts

EconometricsJudgementConsensus forecastCoronavirus disease 2019 (COVID-19)Ensemble forecastingGermanTime horizonActuarial scienceInterval (graph theory)Computer scienceOperations researchEconomicsGeographyInfectious disease (medical specialty)Artificial intelligenceDiseaseMathematicsMedicinePolitical scienceFinanceArchaeologyCombinatoricsLawPathologyCOVID-19 epidemiological studiesData-Driven Disease SurveillanceInfluenza Virus Research Studies